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    <title>浏阳德塔软件开发有限公司 女娲计划</title>
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    <br/>第一章_德塔自然语言图灵系统
    <br/> 作者: 罗瑶光, Author:Yaoguang.Luo<br/>
    <br/> 基础应用: 元基催化与肽计算 编译机的语言分析机
    <br/>
    RNN <br/>
    德塔的词位卷积计算RNN, 主要包含词性比率, 词距比率算子和欧基里德熵算子. 这三个算子主要
    用于求解 POS距离, COVEX距离, EUCLID距离. 这些权距 在一篇文章中, 能够很清楚的计算
    每一个词汇的使用度, 出现的价值, 和应用频率以及分布规律. 用于文本的主要描述语句的
    重心所在位置计算.
    <br/>
    RNN, DetaParser RNN computing. It mainly contained a distance set and
    entropy set etc. Those sets were computed as observer weights of Part
    of Speed POS, Covex of position and Euclid KNN. With associating in
    text mining and analysis domain. It could clearly find out an
    information by each lexicon, such as the frequency count, ruly
    distribution and trace weight. Above sets could make a good
    implementation of summing centre for the next steps. <br/>
    <br/>
    1词位卷积计算refer page 178 <br/>
    2用于确定文本的重心 <br/>
    2. 1 算子组成 <br/>
    2. 1. 1 P POS 词性比率 <br/>
    2. 1. 2 C CORRELATION 词距比率 <br/>
    2. 1. 3 E E-DISTANCE 欧基里德熵 <br/>
    refer page 18 <br/>

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